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Use of biplane quantitative angiographic imaging with ensemble neural networks to assess reperfusion status during mechanical thrombectomy

机译:双血管定量血管造影成像与集合神经网络的用途评估机械血栓切除术期间的再灌注状态

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Digital subtraction angiography (DSA) is the main imaging modality used to assess reperfusion during mechanical thrombectomy (MT) when treating large vessel occlusion (LVO) ischemic strokes. To improve this visual and subjective assessment, hybrid models combining angiographic parametric imaging (API) with deep learning tools have been proposed. These models use convolutional neural networks (CNN) with single view individual API maps, thus restricting use of complementary information from multiple views and maps resulting in loss of relevant clinical information. This study investigates use of ensemble networks to combine hemodynamic information from multiple bi-plane API maps to assess level of reperfusion. Three-hundred-eighty-three anteroposterior (AP) and lateral view DSAs were retrospectively collected from patients who underwent MTs of anterior circulation LVOs. API peak height (PH) and area under time density curve (AUC) maps were generated. CNNs were developed to classify maps as adequate/inadequate reperfusion as labeled by two neuro-interventionalists. Outputs from individual networks were combined by weighting each output, using a grid search algorithm. Ensembled, AP-AUC, AP-PH, lateral-AUC, and lateral-PH networks achieved accuracies of 83.0% (95% confidence-interval: 81.2%-84.8%), 74.4% (72.0%-76.7%), 74.2% (72.8%-75.7%), 74.9% (72.2%-77.7%), and 76.9% (74.4%-79.5%); area under receiver operating characteristic curves of 0.86 (0.84-0.88), 0.81 (0.79-0.83), 0.83 (0.81-0.84), 0.82 (0.8-0.84), and 0.84 (0.82-0.87); and Matthews correlation coefficients of 0.66 (0.63-0.70), 0.48 (0.43-0.53), 0.49 (0.46-0.52), 0.51 (0.45-0.56), and 0.54 (0.49-0.59) respectively. Ensembled network performance was significantly better than individual networks (McNemar's p-value<0.05). This study proved feasibility of using ensemble networks to combine hemodynamic information from multiple bi-plane API maps to assess level of reperfusion during MTs.
机译:数字减法血管造影(DSA)是用于在治疗大容器闭塞(LVO)缺血性时的机械血液切除术期间评估再灌注的主要成像模态。为了改善这种视觉和主观评估,已经提出了将血管造影参数(API)与深学习工具组合的混合模型。这些模型使用卷积神经网络(CNN)与单视图单独的API映射,从而限制了从多个视图和地图中使用互补信息,导致相关的临床信息丢失。本研究调查了集合网络与多个双平面API地图组合血液动力学信息以评估再灌注水平。回顾性地从前循环液相识的患者中回顾性地收集了三百八十三个前后(AP)和横向视图DSA。产生API峰值高度(pH)和时间密度曲线(AUC)地图的区域。被开发的CNNS以将地图分类为适当/不足的再灌注,由两个神经介入者标记为标记。使用网格搜索算法,通过加权各个输出来组合来自各个网络的输出。 Ensembled,AP-AUC,AP-pH,横向-AUS和横向pH网络的精度为83.0%(95%置信区间:81.2%-84.8%),74.4%(72.0%-76.7%),74.2% (72.8%-75.7%),74.9%(72.2%-77.7%),76.9%(74.4%-79.5%);接收器下的区域,操作特性曲线为0.86(0.84-0.88),0.81(0.79-0.83),0.83(0.81-0.84),0.82(0.8-0.84)和0.84(0.82-0.87);和马修的相关系数0.66(0.63-0.70),0.48(0.43-0.53),0.49(0.46-0.52),0.51(0.45-0.56)和0.54(0.49-0.59)。合奏网络性能明显优于单个网络(McNemar的P值<0.05)。本研究证明了使用集合网络将血液动力学信息与多双平面API映射组合以评估MTS期间再灌注水平的可行性。

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